Context-Aware Techniques for Cross-Domain Recommender Systems

D. V. D. Silva, R. Prudêncio, C. Ferraz, Alysson Bispo, T. Prota
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引用次数: 7

Abstract

In the last few years, cross-domain recommender systems emerged in order to improve and alleviate problems of single-domain recommender systems. Despite the great number of cross-domain recommender system approaches, there is a lack of studies concerned about the use of contextual features in cross domain recommender systems. The context-aware approach uses different contextual information (e.g., Location, time, and mood) in order to improve recommendations, where context can be treated as a bridge between different domains. In this paper, we investigate the adoption of two context-aware approaches in a cross-domain recommender system in order to improve its recommendation accuracy. For that, we describe the context aware cross-domain recommendation problem and the proposed context-aware algorithms. An experimental evaluation performed using a real dataset indicates that context-aware techniques can be a good approach in order to improve the cross-domain recommendation accuracy.
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跨领域推荐系统的上下文感知技术
近年来,为了改进和缓解单领域推荐系统存在的问题,出现了跨领域推荐系统。尽管有大量的跨领域推荐系统方法,但缺乏关于上下文特征在跨领域推荐系统中使用的研究。上下文感知方法使用不同的上下文信息(例如,位置、时间和情绪)来改进推荐,其中上下文可以被视为不同领域之间的桥梁。在本文中,我们研究了在跨领域推荐系统中采用两种上下文感知方法来提高其推荐准确性。为此,我们描述了上下文感知的跨域推荐问题,并提出了上下文感知算法。使用真实数据集进行的实验评估表明,上下文感知技术可以提高跨域推荐的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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